In Operando Identification of In Situ Formed Metalloid Zincδ+ Active Sites for Highly Efficient Electrocatalyzed Carbon Dioxide Reduction
Electrochemical CO2‐to‐CO conversion provides a possible way to address problems associated with the greenhouse effect; however, developing low‐cost electrocatalysts to mediate high‐efficiency CO2 reduction remains a challenge on account of the limited understanding of the nature of the real active...
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Veröffentlicht in: | Angewandte Chemie International Edition 2022-07, Vol.61 (28), p.e202202298-n/a |
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Sprache: | eng |
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Zusammenfassung: | Electrochemical CO2‐to‐CO conversion provides a possible way to address problems associated with the greenhouse effect; however, developing low‐cost electrocatalysts to mediate high‐efficiency CO2 reduction remains a challenge on account of the limited understanding of the nature of the real active sites. Herein, we reveal the Znδ+ metalloid sites as the real active sites of stable nonstoichiometric ZnOx structure derived from Zn2P2O7 through operando X‐ray absorption fine structure analysis in conjunction with evolutionary‐algorithm‐based global optimization. Furthermore, theoretical and experimental results demonstrated that Znδ+ metalloid active sites could facilitate the activation of CO2 and the hydrogenation of *CO2, thus accelerating the CO2‐to‐CO conversion. Our work establishes a critical fundamental understanding of the origin of the real active center in the zinc‐based electrocatalysts for CO2 reduction reaction.
In a zinc‐based electrocatalyst for CO2 reduction reaction, the Znδ+ metalloid hollow sites of stable, nonstoichiometric ZnOx, derived from Zn2P2O7, were shown to be the real active site structures for CO2‐to‐CO conversion, demonstrated by structure characterizations through operando X‐ray absorption fine structure analysis in conjunction with evolutionary‐algorithm‐based global optimization. |
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ISSN: | 1433-7851 1521-3773 |
DOI: | 10.1002/anie.202202298 |